Capturing Mood Dynamics Through Adolescent Smartphone Social Communication

Lilian Y. Li, Esha Trivedi, Fiona Helgren, Grace O. Allison, Emily Zhang, Savannah N. Buchanan, David Pagliaccio, Katherine Durham, Nicholas B. Allen, Randy P. Auerbach, Stewart A. Shankman*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

4 Scopus citations

Abstract

Most adolescents with depression remain undiagnosed and untreated—missed opportunities that are costly from both personal and public health perspectives. A promising approach to detecting adolescent depression in real-time and at a large scale is through their social communication on the smartphone (e.g., text messages, social media posts). Past research has shown that language from online social communication reliably indicates interindividual differences in depression. To move toward detecting the emergence of depression symptoms intraindividually, the present study tested whether sentiment (i.e., words connoting positive and negative affect) from smartphone social communication prospectively predicted daily mood fluctuations in 83 adolescents (Mage = 16.49, 73.5% female) with a wide range of depression severity. Participants completed daily mood ratings across a 90-day period, during which 354,278 messages were passively collected from social communication apps. Greater positive sentiment (i.e., more positiveweighted composite valence score and a greater proportion of words expressing positive sentiment) predicted more positive next-day mood, controlling for previous-day mood. Moreover, greater proportions of positive and negative sentiment were, respectively, associated with lower anhedonia and greater dysphoria symptoms measured at baseline. Exploratory analyses of nonaffective linguistic features showed that greater use of social engagement words (e.g., friends and affiliation) and emojis (primarily consisting of hearts) predicted more positive changes in mood. Collectively, findings suggest that language from smartphone social communication can detect mood fluctuations in adolescents, laying the foundation for language-based tools to identify periods of heightened depression risk.

Original languageEnglish (US)
Pages (from-to)1072-1084
Number of pages13
JournalJournal of Psychopathology and Clinical Science
Volume132
Issue number8
DOIs
StatePublished - 2023

Funding

This work was supported by the National Institute of Mental Health, including R01 MH119771 (Randy P. Auerbach, Stewart A. Shankman), U01 MH116923 (Nicholas B. Allen, Randy P. Auerbach), and R21 MH125044 (David Pagliaccio). The Morgan Stanley Foundation also supported this research project (Randy P. Auerbach, David Pagliaccio). The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institutes of Health.

Keywords

  • adolescence
  • depression
  • digital phenotyping
  • intraindividual variability
  • language

ASJC Scopus subject areas

  • Psychology (miscellaneous)
  • Biological Psychiatry
  • Clinical Psychology
  • Psychiatry and Mental health
  • Medicine (miscellaneous)

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